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Quantitative detection of settle dust over green canopy using sparse unmixing of airborne hyperspectral data

机译:使用稀疏分解的航空高光谱数据定量检测绿色冠层上的沉降粉尘

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The main task of environmental and geosciences applications are efficient and accurate quantitative classification of earth surfaces and spatial phenomena. Recently, the ground-truth and laboratory measured spectral signatures promoted by advanced algorithms are proposed as a new path toward solving the unmixing problem of hyperspectral remote sensing (HRS) imagery in semi-supervised fashion. In this paper, the sensitivity of sparse non-linear unmixing techniques to extract and identify a small amount of settle dust over green vegetation canopy using HRS airborne imagery data is proposed. Among the available techniques, this study present results of two selected algorithms: 1) L1/2 sparsity-constrained nonnegative matrix factorization (L1/2-NMF) and 2) orthogonal matching pursuit (OMP). The performance is evaluated on real HRS imagery data via detailed experimental assessment. The first dataset including a conducted study area in Hadera, Israel and the second dataset is APEX Open Science Data Set (OSDS) in Baden, Switzerland. The results compared with performances of selected conventional unmixing techniques.
机译:环境和地球科学应用程序的主要任务是对地球表面和空间现象进行高效,准确的定量分类。最近,提出了由先进算法促进的地面真相和实验室测量光谱特征,作为解决半监督方式的高光谱遥感(HRS)图像分解问题的一条新途径。本文提出了稀疏非线性分解技术利用HRS机载图像数据提取和识别绿色植被冠层上少量沉降粉尘的敏感性。在可用技术中,本研究提出了两种选定算法的结果:1)L 1/2 稀疏约束非负矩阵分解(L 1/2 -NMF)和2 )正交匹配追踪(OMP)。通过详细的实验评估,在真实HRS图像数据上评估性能。第一个数据集包括在以色列Hadera进行的研究区域,第二个数据集是在瑞士巴登的APEX开放科学数据集(OSDS)。将结果与选定的常规拆解技术的性能进行比较。

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